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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Unsupervised Remote Sensing Image Retrieval Using Probabilistic Latent Semantic Hashing
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Unsupervised Remote Sensing Image Retrieval Using Probabilistic Latent Semantic Hashing

机译:使用概率潜在语义散列无监督遥感图像检索

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Unsupervised hashing methods have attracted considerable attention in large-scale remote sensing (RS) image retrieval, due to their capability for massive data processing with significantly reduced storage and computation. Although existing unsupervised hashing methods are suitable for operational applications, they exhibit limitations when accurately modeling the complex semantic content present in RS images using binary codes (in an unsupervised manner). To address this problem, in this letter, we introduce a novel unsupervised hashing method that takes advantage of the generative nature of probabilistic topic models to encapsulate the hidden semantic patterns of the data into the final binary representation. Specifically, we introduce a new probabilistic latent semantic hashing (pLSH) model to effectively learn the hash codes using three main steps: 1) data grouping, where the input RS archive is clustered into several groups; 2) topic computation, where the pLSH model is used to uncover highly descriptive hidden patterns from each group; and 3) hash code generation, where the data probability distributions are thresholded to generate the final binary codes. Our experimental results, obtained on two benchmark archives, reveal that the proposed method significantly outperforms state-of-the-art unsupervised hashing methods.
机译:由于其具有显着降低的存储和计算的大规模数据处理的能力,无监督的散列方法引起了大规模的遥感(RS)图像检索。虽然现有的无监督散列方法适用于操作应用,但是当使用二进制代码(以无监督的方式)准确地建模存在于RS图像中存在的复杂语义内容时,它们表现出限制。为了解决这个问题,在这封信中,我们介绍了一种新颖的无监督散列方法,利用了概率主题模型的生成性质来将数据的隐藏语义模式封装到最终二进制表示中。具体地,我们介绍了一个新的概率潜像语义散列(PLSH)模型,以有效地使用三个主要步骤学习散列码:1)数据分组,其中输入RS存档被聚集成几个组; 2)主题计算,其中PLSH模型用于从每个组中揭示高度描述性隐藏模式; 3)散列代码生成,其中数据概率分布阈值以生成最终二进制代码。我们在两个基准档案中获得的实验结果,揭示了所提出的方法显着优于最先进的无监督散列方法。

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